ESPRESSO: Robust discovery and quantification of transcript isoforms from error-prone long-read RNA-seq data

Yuan Gao(Children's Hospital of Philadelphia), Feng Wang(Children's Hospital of Philadelphia), Robert Wang(Children's Hospital of Philadelphia), Eric Kutschera(Children's Hospital of Philadelphia), Yang Xu(Children's Hospital of Philadelphia), Stephan Xie(Children's Hospital of Philadelphia), Yuanyuan Wang(Children's Hospital of Philadelphia), Kathryn E. Kadash-Edmondson(Children's Hospital of Philadelphia), Lan Lin(Children's Hospital of Philadelphia), Yi Xing(Children's Hospital of Philadelphia)
Science Advances
January 20, 2023
Cited by 89Open Access
Full Text

Abstract

Long-read RNA sequencing (RNA-seq) holds great potential for characterizing transcriptome variation and full-length transcript isoforms, but the relatively high error rate of current long-read sequencing platforms poses a major challenge. We present ESPRESSO, a computational tool for robust discovery and quantification of transcript isoforms from error-prone long reads. ESPRESSO jointly considers alignments of all long reads aligned to a gene and uses error profiles of individual reads to improve the identification of splice junctions and the discovery of their corresponding transcript isoforms. On both a synthetic spike-in RNA sample and human RNA samples, ESPRESSO outperforms multiple contemporary tools in not only transcript isoform discovery but also transcript isoform quantification. In total, we generated and analyzed ~1.1 billion nanopore RNA-seq reads covering 30 human tissue samples and three human cell lines. ESPRESSO and its companion dataset provide a useful resource for studying the RNA repertoire of eukaryotic transcriptomes.


Related Papers

No related papers found

Powered by citation graph analysis